Non-invasive continuous glucose monitoring: improved accuracy of point and trend estimates of the Multisensor system

被引:0
作者
Mattia Zanon
Giovanni Sparacino
Andrea Facchinetti
Michela Riz
Mark S. Talary
Roland E. Suri
Andreas Caduff
Claudio Cobelli
机构
[1] University of Padova,Department of Information Engineering
[2] Biovotion AG,undefined
来源
Medical & Biological Engineering & Computing | 2012年 / 50卷
关键词
Diabetes; Glucose sensor; Self-monitoring blood glucose; Multivariate models; Linear regression;
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暂无
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学科分类号
摘要
Non-invasive continuous glucose monitoring (NI-CGM) sensors are still at an early stage of development, but, in the near future, they could become particularly appealing in diabetes management. Solianis Monitoring AG (Zurich, Switzerland) has proposed an approach for NI-CGM based on a multi-sensor concept, embedding primarily dielectric spectroscopy and optical sensors. This concept requires a mathematical model able to estimate glucose levels from the 150 channels directly measured through the Multisensor. A static multivariate linear regression model (with order and parameters common to the entire population of subjects) was proposed for such a scope (Caduff et al., Biosens Bioelectron 26:3794–3800, 2011). The aim of this work is to evaluate the accuracy in the estimation of glucose levels and trends that the NI-CGM Multisensor platform can achieve by exploiting different techniques for model identification, namely, ordinary least squares, subset variable selection, partial least squares and least absolute shrinkage and selection operator (LASSO). Data collected in human beings monitored for a total of 45 study days were used for model identification and model test. Several metrics of standard use in the diabetes scientific community to measure point and clinical accuracy of glucose sensors were used to assess the models. Results indicate that the LASSO technique is superior to the others shrinking many channel weights to zero thus leading to smoother glucose profiles and resulting in a more robust model to possible artifacts in the Multisensor data. Although, as expected, the performance of the NI-CGM system with the LASSO model is not yet comparable with that of enzyme-based needle glucose sensors, glucose trends are satisfactorily estimated. Considering the non-invasive nature of the multi-sensor platform, this result can have an immediate impact in the current clinical practice, e.g., to integrate sparse self-monitoring of blood glucose data with an indication of the glucose trend to aid the diabetic patient in dealing with, or even preventing in the short time scale, the threats of critical events such as hypoglycaemia.
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页码:1047 / 1057
页数:10
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  • [1] Abu-Rmileh A(2010)A robust sliding mode controller with internal model for closed-loop artificial pancreas Med Biol Eng Comput 48 1191-1201
  • [2] Garcia-Gabin W(2005)Noninvasive glucose sensing Anal Chem 77 5429-5439
  • [3] Zambrano D(2005)A critical assessment of algorithms and challenges in the development of a closed-loop artificial pancreas Diabetes Technol Ther 7 28-47
  • [4] Arnold MA(2010)Continuous glucose monitoring Int J Clin Pract Suppl 166 11-15
  • [5] Small GW(2011)Dynamics of insulin action in hypertension: assessment from minimal model interpretation of intravenous glucose tolerance test data Med Biol Eng Comput 49 831-841
  • [6] Bequette BW(2006)Non-invasive glucose monitoring in patients with diabetes: a novel system based on impedance spectroscopy Biosens Bioelectron 22 598-604
  • [7] Bode BW(2009)Non-invasive glucose monitoring in patients with type 1 diabetes: a multisensor system combining sensors for dielectric and optical characterisation of skin Biosens Bioelectron 24 2778-2784
  • [8] Battelino T(2010)Cutaneous blood perfusion as a perturbing factor for noninvasive glucose monitoring Diabetes Technol Ther 12 1-9
  • [9] Burattini R(2011)Characteristics of a multisensor system for non invasive glucose monitoring with external validation and prospective evaluation Biosens Bioelectron 26 3794-3800
  • [10] Morettini M(1987)Evaluating clinical accuracy of systems for self-blood glucose monitoring systems Diabetes Care 10 622-628